AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a function f, a matrix A and a vector b is proposed. In contrast to an implementation proposed previously, it requires constant work and constant storage space per restart cycle. The convergence behavior of this scheme is discussed and a new stopping criterion based on an error indicator is given. The performance of the implementation is illustrated for three parabolic initial value problems, requiring the evaluation of exp(A)b
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a functio...
We show how the Arnoldi algorithm for approximating a function of a matrix times a vector can be res...
This thesis deals with Krylov subspace methods for computing the action of a matrix function on a ve...
A variety of block Krylov subspace methods have been successfully developed for linear systems and m...
A variety of block Krylov subspace methods have been successfully developed for linear systems and m...
We analyze an expansion of the generalized block Krylov subspace framework of [Electron.\ Trans.\ Nu...
A common way to approximate $F(A)b$ -- the action of a matrix function on a vector -- is to use the ...
AbstractWe provide an overview of existing strategies which compensate for the deterioration of conv...
AbstractThe evaluation of matrix functions of the form f(A)v, where A is a large sparse or structure...
This thesis studies two classes of numerical linear algebra problems, approximating the product of a...
none4siBlock Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solver...
The convergence of Krylov subspace eigenvalue algorithms can be robustly measured by the angle the a...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
AbstractA new implementation of restarted Krylov subspace methods for evaluating f(A)b for a functio...
We show how the Arnoldi algorithm for approximating a function of a matrix times a vector can be res...
This thesis deals with Krylov subspace methods for computing the action of a matrix function on a ve...
A variety of block Krylov subspace methods have been successfully developed for linear systems and m...
A variety of block Krylov subspace methods have been successfully developed for linear systems and m...
We analyze an expansion of the generalized block Krylov subspace framework of [Electron.\ Trans.\ Nu...
A common way to approximate $F(A)b$ -- the action of a matrix function on a vector -- is to use the ...
AbstractWe provide an overview of existing strategies which compensate for the deterioration of conv...
AbstractThe evaluation of matrix functions of the form f(A)v, where A is a large sparse or structure...
This thesis studies two classes of numerical linear algebra problems, approximating the product of a...
none4siBlock Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solver...
The convergence of Krylov subspace eigenvalue algorithms can be robustly measured by the angle the a...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...
Block Krylov subspace methods (KSMs) comprise building blocks in many state-of-the-art solvers for l...